Changsheng LiQingshan LiuWeishan DongFan WeiXin ZhangLin Yang
In this brief, we propose a new max-margin-based discriminative feature learning method. In particular, we aim at learning a low-dimensional feature representation, so as to maximize the global margin of the data and make the samples from the same class as close as possible. In order to enhance the robustness to noise, we leverage a regularization term to make the transformation matrix sparse in rows. In addition, we further learn and leverage the correlations among multiple categories for assisting in learning discriminative features. The experimental results demonstrate the power of the proposed method against the related state-of-the-art methods.
Yahya ForghaniZohreh Zendehdel
Luping ZhouLei WangLingqiao LiuPhilip OgunbonaDinggang Shen
Yamuna PrasadDinesh KhandelwalKoushik Biswas
Pendar AlirezazadehFadi DornaikaAbdelmalik Moujahid